Dartmouth College, Thayer School of Engineering, HB 8000, Hanover, New Hampshire 03755, USA.
J Biomed Opt. 2010 Sep-Oct;15(5):051602. doi: 10.1117/1.3483902.
Fluorescence molecular tomography (FMT) systems coupled to conventional imaging modalities such as magnetic resonance imaging (MRI) and computed tomography provide unique opportunities to combine data sets and improve image quality and content. Yet, the ideal approach to combine these complementary data is still not obvious. This preclinical study compares several methods for incorporating MRI spatial prior information into FMT imaging algorithms in the context of in vivo tissue diagnosis. Populations of mice inoculated with brain tumors that expressed either high or low levels of epidermal growth factor receptor (EGFR) were imaged using an EGF-bound near-infrared dye and a spectrometer-based MRI-FMT scanner. All data were spectrally unmixed to extract the dye fluorescence from the tissue autofluorescence. Methods to combine the two data sets were compared using student's t-tests and receiver operating characteristic analysis. Bulk fluorescence measurements that made up the optical imaging data set were also considered in the comparison. While most techniques were able to distinguish EGFR(+) tumors from EGFR(-) tumors and control animals, with area-under-the-curve values=1, only a handful were able to distinguish EGFR(-) tumors from controls. Bulk fluorescence spectroscopy techniques performed as well as most imaging techniques, suggesting that complex imaging algorithms may be unnecessary to diagnose EGFR status in these tissue volumes.
荧光分子断层扫描(FMT)系统与磁共振成像(MRI)和计算机断层扫描等常规成像方式相结合,提供了独特的机会来结合数据集并提高图像质量和内容。然而,将这些互补数据结合起来的理想方法仍然不明显。本临床前研究比较了几种方法,这些方法将 MRI 空间先验信息纳入体内组织诊断中 FMT 成像算法。使用与表皮生长因子受体(EGFR)结合的近红外染料和基于光谱仪的 MRI-FMT 扫描仪对表达高水平或低水平 EGFR 的脑肿瘤接种的小鼠群体进行成像。所有数据均进行光谱解混,以从组织自发荧光中提取染料荧光。使用学生 t 检验和接收者操作特征分析比较了两种数据集的组合方法。比较中还考虑了构成光学成像数据集的体荧光测量值。虽然大多数技术能够区分 EGFR(+)肿瘤与 EGFR(-)肿瘤和对照动物,曲线下面积值=1,但只有少数技术能够区分 EGFR(-)肿瘤与对照动物。体荧光光谱技术与大多数成像技术一样表现良好,这表明在这些组织体积中诊断 EGFR 状态可能不需要复杂的成像算法。